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"description": "R interface to the OpenAI ChatGPT API"
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"description": "Use large language models directly in your development environment"
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"description": "Generating time series with diverse and controllable characteristics"
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"description": "Debugging for grid graphics"
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"name": "R-gridExtra",
"description": "Miscellaneous functions for grid graphics"
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"name": "R-gridGraphics",
"description": "Redraw base graphics using grid graphics"
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"name": "R-gridGraphviz",
"description": "Draw graphs with grid"
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{
"name": "R-gridpattern",
"description": "Grid pattern grobs"
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"name": "R-gridSVG",
"description": "Export grid graphics as SVG"
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"description": "Improved text rendering support for grid graphics"
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"name": "R-gRim",
"description": "Graphical Interaction Models"
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"name": "R-grImport",
"description": "Functions for converting, importing and drawing PostScript pictures in R plots"
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"description": "Import SVG graphics"
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"name": "R-GRNNs",
"description": "General Regression Neural Networks package"
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"name": "R-groc",
"description": "Generalized Regression on Orthogonal Components"
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"name": "R-groHMM",
"description": "GRO-seq analysis pipeline"
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"name": "R-groundhog",
"description": "Version-control for CRAN, GitHub and GitLab packages"
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"description": "Infer group Bayesian networks via hierarchical feature clustering"
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"description": "Create groups from data"
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{
"name": "R-groupr",
"description": "Groups with inapplicable values"
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{
"name": "R-grpnet",
"description": "Group elastic net-regularized GLM"
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{
"name": "R-grpreg",
"description": "Regularization paths for regression models with grouped covariates"
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{
"name": "R-GSA",
"description": "Gene Set Analysis"
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{
"name": "R-gsbDesign",
"description": "Group Sequential Bayes Design"
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